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Main Authors: Zhong, Yisheng, Wen, Yizhu, Guo, Junfeng, Kafai, Mehran, Huang, Heng, Guo, Hanqing, Zhu, Zhuangdi
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2505.12655
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author Zhong, Yisheng
Wen, Yizhu
Guo, Junfeng
Kafai, Mehran
Huang, Heng
Guo, Hanqing
Zhu, Zhuangdi
author_facet Zhong, Yisheng
Wen, Yizhu
Guo, Junfeng
Kafai, Mehran
Huang, Heng
Guo, Hanqing
Zhu, Zhuangdi
contents The protection of cyber Intellectual Property (IP) such as web content is an increasingly critical concern. The rise of large language models (LLMs) with online retrieval capabilities enables convenient access to information but often undermines the rights of original content creators. As users increasingly rely on LLM-generated responses, they gradually diminish direct engagement with original information sources, which will significantly reduce the incentives for IP creators to contribute, and lead to a saturating cyberspace with more AI-generated content. In response, we propose a novel defense framework that empowers web content creators to safeguard their web-based IP from unauthorized LLM real-time extraction and redistribution by leveraging the semantic understanding capability of LLMs themselves. Our method follows principled motivations and effectively addresses an intractable black-box optimization problem. Real-world experiments demonstrated that our methods improve defense success rates from 2.5% to 88.6% on different LLMs, outperforming traditional defenses such as configuration-based restrictions.
format Preprint
id arxiv_https___arxiv_org_abs_2505_12655
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Web Intellectual Property at Risk: Preventing Unauthorized Real-Time Retrieval by Large Language Models
Zhong, Yisheng
Wen, Yizhu
Guo, Junfeng
Kafai, Mehran
Huang, Heng
Guo, Hanqing
Zhu, Zhuangdi
Cryptography and Security
Artificial Intelligence
The protection of cyber Intellectual Property (IP) such as web content is an increasingly critical concern. The rise of large language models (LLMs) with online retrieval capabilities enables convenient access to information but often undermines the rights of original content creators. As users increasingly rely on LLM-generated responses, they gradually diminish direct engagement with original information sources, which will significantly reduce the incentives for IP creators to contribute, and lead to a saturating cyberspace with more AI-generated content. In response, we propose a novel defense framework that empowers web content creators to safeguard their web-based IP from unauthorized LLM real-time extraction and redistribution by leveraging the semantic understanding capability of LLMs themselves. Our method follows principled motivations and effectively addresses an intractable black-box optimization problem. Real-world experiments demonstrated that our methods improve defense success rates from 2.5% to 88.6% on different LLMs, outperforming traditional defenses such as configuration-based restrictions.
title Web Intellectual Property at Risk: Preventing Unauthorized Real-Time Retrieval by Large Language Models
topic Cryptography and Security
Artificial Intelligence
url https://arxiv.org/abs/2505.12655